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Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots

We developed a quality assurance (QA) tool, namely microarray outlier filter (MOF), and have applied it to our microarray datasets for the identification of problematic arrays. Our approach is based on the comparison of the arrays using the correlation coefficient and the number of outlier spots gen...

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Detalles Bibliográficos
Autores principales: Yang, Song, Guo, Xiang, Yang, Yaw-Ching, Papcunik, Denise, Heckman, Caroline, Hooke, Jeffrey, Shriver, Craig D., Liebman, Michael N., Hu, Hai
Formato: Texto
Lenguaje:English
Publicado: Libertas Academica 2007
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2675485/
https://www.ncbi.nlm.nih.gov/pubmed/19458777
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author Yang, Song
Guo, Xiang
Yang, Yaw-Ching
Papcunik, Denise
Heckman, Caroline
Hooke, Jeffrey
Shriver, Craig D.
Liebman, Michael N.
Hu, Hai
author_facet Yang, Song
Guo, Xiang
Yang, Yaw-Ching
Papcunik, Denise
Heckman, Caroline
Hooke, Jeffrey
Shriver, Craig D.
Liebman, Michael N.
Hu, Hai
author_sort Yang, Song
collection PubMed
description We developed a quality assurance (QA) tool, namely microarray outlier filter (MOF), and have applied it to our microarray datasets for the identification of problematic arrays. Our approach is based on the comparison of the arrays using the correlation coefficient and the number of outlier spots generated on each array to reveal outlier arrays. For a human universal reference (HUR) dataset, which is used as a technical control in our standard hybridization procedure, 3 outlier arrays were identified out of 35 experiments. For a human blood dataset, 12 outlier arrays were identified from 185 experiments. In general, arrays from human blood samples displayed greater variation in their gene expression profiles than arrays from HUR samples. As a result, MOF identified two distinct patterns in the occurrence of outlier arrays. These results demonstrate that this methodology is a valuable QA practice to identify questionable microarray data prior to downstream analysis.
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spelling pubmed-26754852009-05-20 Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots Yang, Song Guo, Xiang Yang, Yaw-Ching Papcunik, Denise Heckman, Caroline Hooke, Jeffrey Shriver, Craig D. Liebman, Michael N. Hu, Hai Cancer Inform Original Research We developed a quality assurance (QA) tool, namely microarray outlier filter (MOF), and have applied it to our microarray datasets for the identification of problematic arrays. Our approach is based on the comparison of the arrays using the correlation coefficient and the number of outlier spots generated on each array to reveal outlier arrays. For a human universal reference (HUR) dataset, which is used as a technical control in our standard hybridization procedure, 3 outlier arrays were identified out of 35 experiments. For a human blood dataset, 12 outlier arrays were identified from 185 experiments. In general, arrays from human blood samples displayed greater variation in their gene expression profiles than arrays from HUR samples. As a result, MOF identified two distinct patterns in the occurrence of outlier arrays. These results demonstrate that this methodology is a valuable QA practice to identify questionable microarray data prior to downstream analysis. Libertas Academica 2007-02-24 /pmc/articles/PMC2675485/ /pubmed/19458777 Text en © 2006 The authors.
spellingShingle Original Research
Yang, Song
Guo, Xiang
Yang, Yaw-Ching
Papcunik, Denise
Heckman, Caroline
Hooke, Jeffrey
Shriver, Craig D.
Liebman, Michael N.
Hu, Hai
Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots
title Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots
title_full Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots
title_fullStr Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots
title_full_unstemmed Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots
title_short Detecting Outlier Microarray Arrays by Correlation and Percentage of Outliers Spots
title_sort detecting outlier microarray arrays by correlation and percentage of outliers spots
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2675485/
https://www.ncbi.nlm.nih.gov/pubmed/19458777
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